Privacy-Enhancing Digital Contact Tracing with Machine Learning for Pandemic Response: A Comprehensive Review

IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Big Data and Cognitive Computing Pub Date : 2023-06-01 DOI:10.3390/bdcc7020108
C. Hang, Yi-Zhen Tsai, Pei-Duo Yu, Jiasi Chen, C. Tan
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引用次数: 1

Abstract

The rapid global spread of the coronavirus disease (COVID-19) has severely impacted daily life worldwide. As potential solutions, various digital contact tracing (DCT) strategies have emerged to mitigate the virus’s spread while maintaining economic and social activities. The computational epidemiology problems of DCT often involve parameter optimization through learning processes, making it crucial to understand how to apply machine learning techniques for effective DCT optimization. While numerous research studies on DCT have emerged recently, most existing reviews primarily focus on DCT application design and implementation. This paper offers a comprehensive overview of privacy-preserving machine learning-based DCT in preparation for future pandemics. We propose a new taxonomy to classify existing DCT strategies into forward, backward, and proactive contact tracing. We then categorize several DCT apps developed during the COVID-19 pandemic based on their tracing strategies. Furthermore, we derive three research questions related to computational epidemiology for DCT and provide a detailed description of machine learning techniques to address these problems. We discuss the challenges of learning-based DCT and suggest potential solutions. Additionally, we include a case study demonstrating the review’s insights into the pandemic response. Finally, we summarize the study’s limitations and highlight promising future research directions in DCT.
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用机器学习增强隐私的数字接触追踪用于流行病应对:全面综述
冠状病毒疾病(新冠肺炎)在全球的迅速传播严重影响了全球的日常生活。作为潜在的解决方案,各种数字接触者追踪(DCT)策略已经出现,以缓解病毒的传播,同时保持经济和社会活动。DCT的计算流行病学问题通常涉及通过学习过程进行参数优化,因此了解如何应用机器学习技术进行有效的DCT优化至关重要。虽然最近出现了许多关于DCT的研究,但大多数现有的综述主要集中在DCT应用程序的设计和实现上。本文全面概述了基于隐私保护机器学习的DCT,为未来的流行病做准备。我们提出了一种新的分类法,将现有的DCT策略分为前向、后向和主动联系人追踪。然后,我们根据新冠肺炎大流行期间开发的几个DCT应用程序的追踪策略对其进行分类。此外,我们推导了三个与DCT计算流行病学相关的研究问题,并详细描述了解决这些问题的机器学习技术。我们讨论了基于学习的DCT的挑战,并提出了潜在的解决方案。此外,我们还包括一个案例研究,展示了该综述对疫情应对的见解。最后,我们总结了本研究的局限性,并强调了DCT未来的研究方向。
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来源期刊
Big Data and Cognitive Computing
Big Data and Cognitive Computing Business, Management and Accounting-Management Information Systems
CiteScore
7.10
自引率
8.10%
发文量
128
审稿时长
11 weeks
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